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Profile least squares estimators in the monotone single index model

Abstract

We consider least squares estimators of the finite dimensional regression parameter α\alpha in the single index regression model Y=ψ(αTX)+ϵY=\psi(\alpha^TX)+\epsilon, where XX is a dd-dimensional random vector, E(YX)=ψ(αTX)E(Y|X)=\psi(\alpha^TX), and where ψ\psi is monotone. It has been suggested to estimate α\alpha by a profile least squares estimator, minimizing i=1n(Yiψ(αTXi))2\sum_{i=1}^n(Y_i-\psi(\alpha^TX_i))^2 over monotone ψ\psi and α\alpha on the boundary Sd1S_{d-1}of the unit ball. Although this suggestion has been around for a long time, it is still unknown whether the estimate is n\sqrt{n} convergent. We show that a profile least squares estimator, using the same pointwise least squares estimator for fixed α\alpha, but using a different global sum of squares, is n\sqrt{n}-convergent and asymptotically normal. We show that a profile least squares estimator, using the same pointwise least squares estimator for fixed \bma\bma, but using a different global sum of squares, is n\sqrt{n}-convergent and asymptotically normal. The difference between the corresponding loss functions is studied and also a comparison with other methods is given.

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